5

Hi I am trying to resample a pandas DataFrame backwards. This is my dataframe:

seconds     = np.arange(20, 700, 60)
timedeltas  = pd.to_timedelta(seconds, unit='s')
vals        = np.array([randint(-10,10) for a in range(len(seconds))])
df  = pd.DataFrame({'values': vals}, index = timedeltas)

then I have

In [252]: df
Out[252]: 
          values
00:00:20       8
00:01:20       4
00:02:20       5
00:03:20       9
00:04:20       7
00:05:20       5
00:06:20       5
00:07:20      -6
00:08:20      -3
00:09:20      -5
00:10:20      -5
00:11:20     -10

and

In [253]: df.resample('5min').mean()
Out[253]: 
          values
00:00:20     6.6
00:05:20    -0.8
00:10:20    -7.5

and what I would like is something like

Out[***]: 
          values
00:01:20    6
00:06:20    valb
00:11:20    -5.8

where the values of each new time are the ones if I roll back the dataframe and compute the mean in each bin going from backwards to forward. For example in this case the last value should be

valc = (-6-3-5-5-10)/5.
valc= -5.8

which is the average of the last 5 values, and the first one should be the average of the only 2 first values because the "bin" is incomplete.

Reading pandas documentation I thought that I have to use the parameters how='last' but in my current version of pandas this is not working (version 0.20.3). Additionally I tried with the options closed and convention, but I wasn't able to perform this.

Thanks for the help

1
  • one simple way comes to me is to reorder it.Because the calculation usually goes row by row, however you want to start from the last row. – Shihe Zhang Oct 28 '17 at 3:04

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